I have a numpy array x, dimensions = (20, 4), in which only the first row and column are real string values (alphabets) and rest of the values are numerals with their types allocated as string. I want to change these numeral values to float or integer type.
I have tried some steps:
a. I made copies of first row and column of the array as separate variables:
x_row = x x_col = x[:,0]
Then deleted them from the original array
x (using numpy.delete() method) and convertd the type of remaining values by applying a for loop that iterates over each value. However, when I stack back the copied rows and columns using
numpy.hstack(), then everything again converts to strings type. So, not sure why this is happening.
b. Same procedure as point a, except I used
numpy.insert() method for inserting rows and columns, but is doing the same thing - converting everything back to string type.
So, is there a way through which I don't have to go through this deleting and stacking mechanism (which isn't working anyways) and I can change all the values (except first row and column) of an array to